The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathways

Abstract Background Cancer constitutes a momentous health burden in our society. Critical information on cancer may be hidden in its signaling pathways. However, even though a large amount of money has been spent on cancer research, some critical information on cancer-related signaling pathways stil...

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Main Authors: Yahui Sun, Chenkai Ma, Saman Halgamuge
Format: Article
Language:English
Published: BMC 2017-12-01
Series:BMC Bioinformatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12859-017-1958-4
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spelling doaj-4873c83aba1b4e72b3497bbb1520a2882020-11-25T00:47:20ZengBMCBMC Bioinformatics1471-21052017-12-0118S16536510.1186/s12859-017-1958-4The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathwaysYahui Sun0Chenkai Ma1Saman Halgamuge2Department of Mechanical Engineering, The University of MelbourneDepartment of Surgery, The University of MelbourneResearch School of Engineering, College of Engineering & Computer Science, The Australian National UniversityAbstract Background Cancer constitutes a momentous health burden in our society. Critical information on cancer may be hidden in its signaling pathways. However, even though a large amount of money has been spent on cancer research, some critical information on cancer-related signaling pathways still remains elusive. Hence, new works towards a complete understanding of cancer-related signaling pathways will greatly benefit the prevention, diagnosis, and treatment of cancer. Results We propose the node-weighted Steiner tree approach to identify important elements of cancer-related signaling pathways at the level of proteins. This new approach has advantages over previous approaches since it is fast in processing large protein-protein interaction networks. We apply this new approach to identify important elements of two well-known cancer-related signaling pathways: PI3K/Akt and MAPK. First, we generate a node-weighted protein-protein interaction network using protein and signaling pathway data. Second, we modify and use two preprocessing techniques and a state-of-the-art Steiner tree algorithm to identify a subnetwork in the generated network. Third, we propose two new metrics to select important elements from this subnetwork. On a commonly used personal computer, this new approach takes less than 2 s to identify the important elements of PI3K/Akt and MAPK signaling pathways in a large node-weighted protein-protein interaction network with 16,843 vertices and 1,736,922 edges. We further analyze and demonstrate the significance of these identified elements to cancer signal transduction by exploring previously reported experimental evidences. Conclusions Our node-weighted Steiner tree approach is shown to be both fast and effective to identify important elements of cancer-related signaling pathways. Furthermore, it may provide new perspectives into the identification of signaling pathways for other human diseases.http://link.springer.com/article/10.1186/s12859-017-1958-4Systems biologyBioinformaticsData miningBig data
collection DOAJ
language English
format Article
sources DOAJ
author Yahui Sun
Chenkai Ma
Saman Halgamuge
spellingShingle Yahui Sun
Chenkai Ma
Saman Halgamuge
The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathways
BMC Bioinformatics
Systems biology
Bioinformatics
Data mining
Big data
author_facet Yahui Sun
Chenkai Ma
Saman Halgamuge
author_sort Yahui Sun
title The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathways
title_short The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathways
title_full The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathways
title_fullStr The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathways
title_full_unstemmed The node-weighted Steiner tree approach to identify elements of cancer-related signaling pathways
title_sort node-weighted steiner tree approach to identify elements of cancer-related signaling pathways
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2017-12-01
description Abstract Background Cancer constitutes a momentous health burden in our society. Critical information on cancer may be hidden in its signaling pathways. However, even though a large amount of money has been spent on cancer research, some critical information on cancer-related signaling pathways still remains elusive. Hence, new works towards a complete understanding of cancer-related signaling pathways will greatly benefit the prevention, diagnosis, and treatment of cancer. Results We propose the node-weighted Steiner tree approach to identify important elements of cancer-related signaling pathways at the level of proteins. This new approach has advantages over previous approaches since it is fast in processing large protein-protein interaction networks. We apply this new approach to identify important elements of two well-known cancer-related signaling pathways: PI3K/Akt and MAPK. First, we generate a node-weighted protein-protein interaction network using protein and signaling pathway data. Second, we modify and use two preprocessing techniques and a state-of-the-art Steiner tree algorithm to identify a subnetwork in the generated network. Third, we propose two new metrics to select important elements from this subnetwork. On a commonly used personal computer, this new approach takes less than 2 s to identify the important elements of PI3K/Akt and MAPK signaling pathways in a large node-weighted protein-protein interaction network with 16,843 vertices and 1,736,922 edges. We further analyze and demonstrate the significance of these identified elements to cancer signal transduction by exploring previously reported experimental evidences. Conclusions Our node-weighted Steiner tree approach is shown to be both fast and effective to identify important elements of cancer-related signaling pathways. Furthermore, it may provide new perspectives into the identification of signaling pathways for other human diseases.
topic Systems biology
Bioinformatics
Data mining
Big data
url http://link.springer.com/article/10.1186/s12859-017-1958-4
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